Low-resource fine-tuning of llama-3.1 using QLoRA for Nigerian linguistic contexts

Solomon Joseph Udoabba, Bliss Utibe-Abasi Stephen, Oluseun Damilola Oyeleke, Philip Asuquo, Sadiq Thomas

Abstract


Large language models (LLMs) often underperform in low-resource linguistic environments due to under-representation in pre-training data. This work presents NaijaLLaMA-8B, a parameter-efficient adaptation of Meta’s LLaMA-3.1 8B model for Nigerian English and Nigerian Pidgin using the QLoRA fine-tuning
approach. A subset of 7,000 samples was extracted from the NaijaWeb corpus and used to perform supervised fine-tuning on a single Tesla T4 GPU under strict resource constraints. Performance evaluation shows consistent improvements over the base model, with training loss decreasing from 2.04 to 1.98 and perplexity reducing from 8.20 to 7.38. Small but measurable gains were also observed in BLEU, ROUGE-L, and BERTScore-F1 metrics. Although absolute improvements remain modest, the results validate the technical
feasibility of adapting large language models to Nigerian linguistic contexts using limited compute and dataset size. This study establishes a reproducible baseline for Nigerian-focused language model adaptation and demonstrates the practical viability of parameter-efficient fine-tuning under constrained computational environments

 

Received 31 March 2026

Accepted 20 May 2026

Published 23 June 2026


Keywords


Parameter-efficient fine-tuning, natural language processing, low resource languages, Nigerian Pidgin

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References


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DOI: https://dx.doi.org/10.21622/ACE.2026.06.1.1933

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Copyright (c) 2026 Solomon Joseph Udoabba, Bliss Utibe-Abasi Stephen, Oluseun Damilola Oyeleke, Philip Asuquo, Sadiq Thomas


Advances in Computing and Engineering

E-ISSN: 2735-5985

P-ISSN: 2735-5977

 

Published by:

Academy Publishing Center (APC)

Arab Academy for Science, Technology and Maritime Transport (AASTMT)

Alexandria, Egypt

ace@aast.edu